SKIN CANCER DETECTION USING ARTIFICIAL INTELLIGENCE
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Date
2022Author
Warsi, Mohd. Firoz
Chauhan, Dr. Usha (Supervisor)
Khanam, Dr. Ruqaiya (Co supervisor)
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Show full item recordAbstract
Malignant melanoma is deadliest form of skin cancer but can be easily treated if
detected in early stages. Due to increasing incidence of melanoma, researches in field
of autonomous melanoma detection are accelerated. Malignant melanoma is the most
severe kind of skin cancer. It can grow anywhere on the body. Its exact cause is still
unclear but typically it’s caused by ultraviolet exposure from sun or tanning beds. Its
detection plays a very significant role because if detected early then it’s curable,
before the spread has begun. It can be 95% recovered if it is early diagnosed.
Melanoma cases are rapidly increasing in Australia, New Zealand and Europe.
Australia took highest place in the world with this deadly disease. Early diagnose of
melanoma totally depends upon the accuracy and talent of practitioners. So automatic
detection of melanoma is highly in demand as computer aided diagnosis methods give
great accuracy and they are non-invasive methods for the detection of melanoma. This
thesis investigates different methods for melanoma classification. In long run it will
offer a source to test new and existing methodologies for skin cancer detection.
The main objective of this thesis is to present detailed investigation for CAD in
melanoma detection. Further thesis objective is to improve and build up relevant
segmentation, feature extraction, feature selection and classification techniques that
can cope up with the complexity of dermoscopic, clinical or histopathological images.
Several algorithms were developed during the path of thesis. These algorithms have
been used in skin cancer detection but they can be also used in other machine learning
applications.
The most significant assistance of this thesis can be summarized as below:
Developing novel feature extraction technique and optimization of parameters. The
proposed work has two stages. In first stage, a new method for color and texture
features in one features are extracted with the help of CLCM. This method is
known as 3D CTF extraction. This method is applied on 200 images with
improved results for skin cancer detection. Second stage is applied with 3D CTF
with PCA. This technique is used for dimensionality reduction to improve accuracy
of the classifiers